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Abstract:

The existing methods for tting mixture regression models assume a normal dis-
tribution for error and then estimate the regression parameters by the maximum
likelihood estimate (MLE). In this article, we demonstrate that the MLE, like the
least squares estimate, is sensitive to outliers and heavy-tailed error distributions. We propose a robust estimation procedure and an EM-type algorithm to estimate the mixture regression models. Using a Monte Carlo simulation study, we demon-strate that the proposed new estimation method is robust and works much better than the MLE when there are outliers or the error distribution has heavy tails. In
addition, the proposed robust method works comparably to the MLE when there are no outliers and the error is normal. A real data application is used to illustrate
the success of the proposed robust estimation procedure.